|Publication number||US7995717 B2|
|Application number||US 11/131,850|
|Publication date||Aug 9, 2011|
|Filing date||May 18, 2005|
|Priority date||May 18, 2005|
|Also published as||EP1889254A1, US8594285, US8781102, US9357071, US9571650, US20060262920, US20110249811, US20140064473, US20140301541, US20160277579, US20170155768, WO2006124945A1|
|Publication number||11131850, 131850, US 7995717 B2, US 7995717B2, US-B2-7995717, US7995717 B2, US7995717B2|
|Inventors||Kelly Conway, Keene Hedges Capers, Christopher Danson, Douglas Brown, David Gustafson, Roger Warford, Melissa Moore|
|Original Assignee||Mattersight Corporation|
|Export Citation||BiBTeX, EndNote, RefMan|
|Patent Citations (227), Non-Patent Citations (10), Referenced by (65), Classifications (14), Legal Events (6)|
|External Links: USPTO, USPTO Assignment, Espacenet|
The present invention relates to a concurrently filed application entitled “A Method And System For Recording An Electronic Communication And Extracting Constituent Audio Data Therefrom”, Ser. No. 11/131,844, filed May 18, 2005 the contents of which are hereby incorporated by reference; concurrently filed application entitled “Graphical User Interface For Interactive Display Of Data Resulting From Application Of A Psychological Behavioral Model To A Telephonic Communication Between A Customer And A Contact Center”, Ser. No. 11/131,843, filed May 18, 2005 the contents of which are hereby incorporated by reference; concurrently filed application entitled “A Method And System For Analyzing Separated Voice Data Of A Telephonic Communication Between A Customer And A Contact Center By Applying A Psychological Behavioral Model Thereto”, Ser. No. 11/131,486, filed May 18, 2005 the contents of which are hereby incorporated by reference.
The invention relates to a method and system for analyzing an electronic communication, more particularly, to analyzing a telephone communication between a customer and a contact center by applying a psychological behavioral model thereto.
It is known to utilize telephone call centers to facilitate the receipt, response and routing of incoming telephone calls relating to customer service, retention, and sales. Generally, a customer is in contact with a customer service representative (“CSR”) or call center agent who is responsible for answering the customer's inquiries and/or directing the customer to the appropriate individual, department, information source, or service as required to satisfy the customer's needs.
It is also well known to monitor calls between a customer and a call center agent. Accordingly, call centers typically employ individuals responsible for listening to the conversation between the customer and the agent. Many companies have in-house call centers to respond to customers complaints and inquiries. In many case, however, it has been found to be cost effective for a company to hire third party telephone call centers to handle such inquiries. As such, the call centers may be located thousands of miles away from the actual sought manufacturer or individual. This often results in use of inconsistent and subjective methods of monitoring, training and evaluating call center agents. These methods also may vary widely from call center to call center.
While monitoring such calls may occur in real time, it is often more efficient and useful to record the call for later review. Information gathered from the calls is typically used to monitor the performance of the call center agents to identify possible training needs. Based on the review and analysis of the conversation, a monitor will make suggestions or recommendations to improve the quality of the customer interaction.
Accordingly, there is a need in customer relationship management (“CRM”) for an objective tool useful in improving the quality of customer interactions with agents and ultimately customer relationships. In particular, a need exists for an objective monitoring and analysis tool which provides information about a customer's perception of an interaction during a call. In the past, post-call data collection methods have been used to survey callers for feedback. This feedback may be subsequently used by a supervisor or trainer to evaluate an agent. Although such surveys have enjoyed some degree of success, their usefulness is directly tied to a customer's willingness to provide post-call data.
More “passive” methods have also been employed to collect data relating to a customer's in-call experience. For example, U.S. Pat. No. 6,724,887 to Eilbacher et al. is directed to a method and system for analyzing a customer communication with a contact center. According to Eilbacher, a contact center may include a monitoring system which records customer communications and a customer experience analyzing unit which reviews the customer communications. The customer experience analyzing unit identifies at least one parameter of the customer communications and automatically determines whether the identified parameter of the customer communications indicates a negative or unsatisfactory experience. According to Eilbacher, a stress analysis may be performed on audio telephone calls to determine a stress parameter by processing the audio portions of the telephone calls. From this, it can then be determined whether the customer experience of the caller was satisfactory or unsatisfactory.
While the method of Eilbacher provides some benefit with respect to reaching an ultimate conclusion as to whether a customer's experience was satisfactory or unsatisfactory, the method provides little insight into the reasons for an experiential outcome. As such, the method of Eilbacher provides only limited value in training agents for future customer communications. Accordingly, there exists a need for a system that analyzes the underlying behavioral characteristics of a customer and agent so that data relating to these behavioral characteristics can be used for subsequent analysis and training.
Systems such as stress analysis systems, spectral analysis models and word-spotting models also exist for determining certain characteristics of audible sounds associated with a communication. For example, systems such as those disclosed in U.S. Pat. No. 6,480,826 to Pertrushin provide a system and method for determining emotions in a voice signal. However, like Eilbacher, these systems also provide only limited value in training customer service agents for future customer interactions. Moreover, such methods have limited statistical accuracy in determining stimuli for events occurring throughout an interaction.
It is well known that certain psychological behavioral models have been developed as tools to evaluate and understand how and/or why one person or a group of people interacts with another person or group of people. [The Process Communication Model® (“PCM”) developed by Dr. Taibi Kahler is an example of one such behavioral model. Specifically, PCM presupposes that all people fall primarily into one of six basic personality types: Reactor, Workaholic, Persister, Dreamer, Rebel and Promoter. Although each person is one of these six types, all people have parts of all six types within them arranged like a “six-tier configuration.” Each of the six types learns differently, is motivated differently, communicates differently, and has a different sequence of negative behaviors in which they engage when they are in distress. Importantly each PCM personality type responds positively or negatively to communications that include tones or messages commonly associated with another of the PCM personality types. Thus, an understanding of a communicant's PCM personality type offers guidance as to an appropriate responsive tone or message.] There exists a need for a system and method that analyzes the underlying behavioral characteristics of a customer and agent communication by automatically applying a psychological behavioral model [such as, for example PCM,] to the communication.
Devices and software for recording and logging calls to a call center are well known. However, application of word-spotting analytical tools to recorded audio communications can pose problems. Devices and software that convert recorded or unrecorded audio signals to text files are also known the art. But, translation of audio signals to text files often results in lost voice data due to necessary conditioning and/or compression of the audio signal. Accordingly, a need also exists to provide a system that allows a contact center to capture audio signals and telephony events with sufficient clarity to accurately apply a linguistic-based psychological behavioral analytic tool to a telephonic communication.
The present invention is provided to solve the problems discussed above and other problems, and to provide advantages and aspects not previously provided. A full discussion of the features and advantages of the present invention is deferred to the following detailed description, which proceeds with reference to the accompanying drawings.
According to the present invention, a method for analyzing a telephonic communication between a customer and a contact center is provided. According to the method, a telephonic communication is separated into at least first constituent voice data and second constituent voice data. One of the first and second constituent voice data is analyzed by mining the voice data and applying a predetermined linguistic-based psychological behavioral model to one of the separated first and second constituent voice data. Behavioral assessment data is generated which corresponds to the analyzed voice data.
According to another aspect of the present invention, the telephonic communication is received in digital format. The step of separating the communication into at least a first and second constituent voice data comprises the steps of identifying a communication protocol associated with the telephonic communication, and recording the telephonic communication to a first electronic data file. The first electronic data file is comprised of a first and second audio track. The first constituent voice data is automatically recorded on the first audio track based on the identified communication protocol, and the second constituent voice data is automatically recorded on the second audio track based on the identified communication protocol. At least one of the first and second constituent voice data recorded on the corresponding first and second track is separated from the first electronic data file. It is also contemplated that two first data files can be created, wherein the first audio track is recorded to one of the first data file and the second audio track is recorded to the other first data file.
According to another aspect of the present invention, the method described above further comprises the step of generating a text file before the analyzing step. The text file includes a textual translation of either or both of the first and second constituent voice data. The analysis is then performed on the translated constituent voice data in the text file.
According to another aspect of the present invention, the predetermined linguistic-based psychological behavioral model is adapted to assess distress levels in a communication. Accordingly, the method further comprises the step of generating distress assessment data corresponding to the analyzed second constituent voice data.
According to yet another aspect of the present invention event data is generated. The event data corresponds to at least one identifying indicia and time interval. The event data includes at least one of behavioral assessment data or distress assessment data. It is also contemplated that both behavioral assessment data and distress assessment data are included in the event data.
According to still another aspect of the present invention, the telephonic communication is one of a plurality of telephonic communications. Accordingly, the method further comprises the step of categorizing the telephonic communication as one of a plurality of call types and/or customer categories. The telephonic communication to be analyzed is selected from the plurality of telephonic communications based upon the call type and/or the customer category in which the telephonic communication is categorized.
According to still another aspect of the present invention, a responsive communication to the telephonic communication is automatically generated based on the event data generated as result of the analysis.
According to another aspect of the present invention, a computer program for analyzing a telephonic communication is provided. The computer program is embodied on a computer readable storage medium adapted to control a computer. The computer program comprises a plurality of code segments for performing the analysis of the telephonic communication. In particular, a code segment separates a telephonic communication into first constituent voice data and second constituent voice data. The computer program also has a code segment that analyzes one of the first and second voice data by applying a predetermined psychological behavioral model to one of the separated first and second constituent voice data. And, a code segment is provided for generating behavioral assessment data corresponding to the analyzed constituent voice data.
According to yet another aspect of the present invention, the computer program comprises a code segment for receiving a telephonic communication in digital format. The telephonic communication is comprised of a first constituent voice data and a second constituent voice data. A code segment identifies a communication protocol associated with the telephonic communication. A code segment is provided for separating the first and second constituent voice data one from the other by recording the telephonic communication in stereo format to a first electronic data file. The first electronic data file includes a first and second audio track. The first constituent voice data is automatically recorded on the first audio track based on the identified communication protocol, and the second constituent voice data is automatically recorded on the second audio track based on the identified communication protocol.
A code segment applies a non-linguistic based analytic tool to the separated first constituent voice data and generates phone event data corresponding to the analyzed first constituent voice data. A code segment is provided for translating the first constituent voice data into text format and storing the translated first voice data in a first text file. A code segment analyzes the first text file by mining the text file and applying a predetermined linguistic-based psychological behavioral model to the text file. Either or both of behavioral assessment data and distress assessment data corresponding to the analyzed first voice data is generated therefrom.
According to another aspect of the present invention, the above analysis is performed on the second constituent voice data. Additionally, a code segment is provided for generating call assessment data by comparatively analyzing the behavioral assessment data and distress assessment data corresponding to the analyzed first voice data and the behavioral assessment data and distress assessment data corresponding to the analyzed second voice data. The computer program has a code segment for outputting event data which is comprised of call assessment data corresponding to at least one identifying indicia and at least one predetermined time interval.
According to still another aspect of the present invention, a method for analyzing an electronic communication is provided. The method comprises the step of receiving an electronic communication in digital format. The electronic communication includes communication data. The communication data is analyzed by applying a predetermined linguistic-based psychological behavioral model thereto. Behavioral assessment data corresponding to the analyzed communication data is generated therefrom.
The method described can be embodied in a computer program stored on a computer readable media. The a computer program would include code segments or routines to enable all of the functional aspects of the interface described or shown herein
According to still another aspect of the present invention, the computer program further comprises a code segment for generating a graphical user interface (“GUI”). The GUI is adapted to display a first field for enabling identification of customer interaction event information on a display. The customer interaction event information includes call assessment data based on the psychological behavioral model applied to the analyzed constituent voice data of each customer interaction event. The computer program also includes a code segment for receiving input from a user for identifying at least a first customer interaction event. A code segment is also provided for displaying the customer interaction event information for the first customer interaction event.
According to one aspect of the present invention, the GUI enables a user of the system to locate one or more caller interaction events (i.e., calls between a caller and the call center), and to display information relating to the event. In particular, the graphical user interface provides a visual field showing the results of the psychological behavioral model that was applied to a separated voice data from the caller interaction event. Moreover, the interface can include a link to an audio file of a selected caller interaction event, and a visual representation that tracks the portion of the caller interaction that is currently heard as the audio file is being played.
According to one aspect of the invention, the graphical user interface is incorporated in a system for identifying one or more caller interaction events and displaying a psychological behavioral model applied to a separated voice data of a customer interaction event. The system comprises a computer coupled to a display and to a database of caller interaction event information. The caller interaction event information includes data resulting from application of a psychological behavioral model to a first voice data separated from an audio wave form of a caller interaction event. Additionally, the caller event information can also include additional information concerning each call, such as statistical data relating to the caller interaction event (e.g., time, date and length of call, caller identification, agent identification, hold times, transfers, etc.), and a recording of the caller interaction event.
The system also includes a processor, either at the user's computer or at another computer, such as a central server available over a network connection, for generating a graphical user interface on the display. The graphical user interface comprises a selection visual field for enabling user input of caller interaction event parameters for selection of at least a first caller interaction event and/or a plurality of caller interaction events. The caller interaction event parameters can include one or more caller interaction event identifying characteristic. These characteristics can include, for example, the caller's name or other identification information, a date range, the agent's name, the call center identification, a supervisor identifier, etc. For example, the graphical user interface can enable a user to select all caller interaction events for a particular caller; or all calls handled by a particular agent. Both examples can be narrowed to cover a specified time period or interval. The interface will display a selected caller interaction event field which provides identification of caller interaction events corresponding to the user input of caller interaction event parameters.
The graphical user interface also includes a conversation visual field for displaying a time-based representation of characteristics of the caller interaction event(s) based on the psychological behavioral model. These characteristics were generated by the application of a psychological behavioral model to a first voice data separated from an audio wave form of a caller interaction event which is stored as part of the caller interaction event information.
The conversation visual field can include a visual link to an audio file of the caller interaction event(s). Additionally, it may also include a graphical representation of the progress of the first caller interaction event that corresponds to a portion of the audio file being played. For example, the interface may show a line representing the call and a moving pointer marking the position on the line corresponding to the portion of the event being played. Additionally, the time-based representation of characteristics of the caller interaction event can include graphical or visual characteristic elements which are also displayed in the conversation visual field. Moreover, the characteristic elements are located, or have pointers to, specific locations of the graphical representation of the progress of the event corresponding to where the element was generated by the analysis.
The graphical user interface further includes a call statistics visual field selectable by a user for displaying statistics pertaining to the caller interaction events. The statistics in the call statistics visual field can include, for example: call duration, caller talk time, agent talk time, a caller satisfaction score, an indication of the number of silences greater than a predetermined time period, and an agent satisfaction score.
The graphical user interface can also include a number of other visual fields. For example, the graphical user interface can include a caller satisfaction report field for displaying one or more caller satisfaction reports, or a user note field for enabling a user of the system to place a note with the first caller interaction event.
In accordance with another embodiment of the invention, a method for identifying one or more caller interaction events and displaying an analysis of a psychological behavioral model applied to a separated voice data from the caller interaction event comprises providing a graphical user interface for displaying a first field for enabling identification of caller interaction event information on a display, the caller interaction event information including analysis data based on a psychological behavioral model applied to a first separated voice data of each caller interaction event; receiving input from a user for identifying at least a first caller interaction event; and, displaying the caller interaction event information for the first caller interaction event on the display. The step of receiving input from a user can include receiving at least one or more of a caller identifier, a call center identifier, an agent identifier, a supervisor identifier, and a date range.
The step of displaying the caller interaction event information for the first caller interaction event on the display can include displaying a time-based representation of characteristics of the first caller interaction event based on the psychological behavioral model. The method can also include providing an audio file of the first caller interaction event. In this regard, the displaying of the time-based representation of characteristics of the first caller event based on the psychological behavioral model can include displaying a graphical representation of the progress of the first caller interaction event that corresponds to a portion of the audio file being played.
The graphical user interface can be generated by a user's local computer, or from a remote server coupled to the user's computer via a network connection. In this latter instance, the method can further include creating a web page containing the graphical user interface that is downloadable to a user's computer, and downloading the page via the network connection.
The method can include providing other visual fields for enabling other functions of the system. For example, the method can include providing a field in the graphical user interface for enabling a user to place a note with the information for the first caller interaction event.
The graphical user interface described can be embodied in a computer program stored on a computer readable media. The a computer program would include code segments or routines to enable all of the functional aspects of the interface described or shown herein.
Other features and advantages of the invention will be apparent from the following specification taken in conjunction with the following drawings.
To understand the present invention, it will now be described by way of example, with reference to the accompanying drawings in which:
While this invention is susceptible of embodiments in many different forms, there is shown in the drawings and will herein be described in detail preferred embodiments of the invention with the understanding that the present disclosure is to be considered as an exemplification of the principles of the invention and is not intended to limit the broad aspect of the invention to the embodiments illustrated.
As shown in
Process descriptions or blocks in figures should be understood as representing modules, segments, or portions of code which include one or more executable instructions for implementing specific logical functions or steps in the process. Alternate implementations are included within the scope of the embodiments of the present invention in which functions may be executed out of order from that shown or discussed, including substantially concurrently or in reverse order, depending on the functionality involved, as would be understood by those having ordinary skill in the art.
Generally, in terms of hardware architecture, as shown in
The processor 16 is a hardware device for executing software, particularly software stored in memory 18. The processor 16 can be any custom made or commercially available processor, a central processing unit (CPU), an auxiliary processor among several processors associated with the computer 12, a semiconductor based microprocessor (in the form of a microchip or chip set), a macroprocessor, or generally any device for executing software instructions. Examples of suitable commercially available microprocessors are as follows: a PA-RISC series microprocessor from Hewlett-Packard Company, an 80×8 or Pentium series microprocessor from Intel Corporation, a PowerPC microprocessor from IBM, a Sparc microprocessor from Sun Microsystems, Inc., or a 8xxx series microprocessor from Motorola Corporation.
The memory 18 can include any one or a combination of volatile memory elements (e.g., random access memory (RAM, such as DRAM, SRAM, SDRAM, etc.)) and nonvolatile memory elements (e.g., ROM, hard drive, tape, CDROM, etc.). Moreover, memory 18 may incorporate electronic, magnetic, optical, and/or other types of storage media. The memory 18 can have a distributed architecture where various components are situated remote from one another, but can be accessed by the processor 16.
The software in memory 18 may include one or more separate programs, each of which comprises an ordered listing of executable instructions for implementing logical functions. In the example of
The control system 14 may be a source program, executable program (object code), script, or any other entity comprising a set of instructions to be performed. When a source program, the program needs to be translated via a compiler, assembler, interpreter, or the like, which may or may not be included within the memory 18, so as to operate properly in connection with the O/S 24. Furthermore, the control system 14 can be written as (a) an object oriented programming language, which has classes of data and methods, or (b) a procedure programming language, which has routines, subroutines, and/or functions, for example but not limited to, C, C++, Pascal, Basic, Fortran, Cobol, Perl, Java, and Ada. In one embodiment, the control system 14 is written in C++. The I/O devices 20 may include input devices, for example but not limited to, a keyboard, mouse, scanner, microphone, touch screens, interfaces for various medical devices, bar code readers, stylus, laser readers, radio-frequency device readers, etc. Furthermore, the I/O devices 20 may also include output devices, for example but not limited to, a printer, bar code printers, displays, etc. Finally, the I/O devices 20 may further include devices that communicate both inputs and outputs, for instance but not limited to, a modulator/demodulator (modem; for accessing another device, system, or network), a radio frequency (RF) or other transceiver, a telephonic interface, a bridge, a router, etc.
If the computer 12 is a PC, workstation, PDA, or the like, the software in the memory 18 may further include a basic input output system (BIOS) (not shown in
When the computer 12 is in operation, the processor 16 is configured to execute software stored within the memory 18, to communicate data to and from the memory 18, and to generally control operations of the computer 12 pursuant to the software. The control system 14 and the O/S 24, in whole or in part, but typically the latter, are read by the processor 16, perhaps buffered within the processor 16, and then executed.
When the control system 14 is implemented in software, as is shown in
In another embodiment, where the control system 14 is implemented in hardware, the control system 14 can be implemented with any or a combination of the following technologies, which are each well known in the art: a discrete logic circuit(s) having logic gates for implementing logic functions upon data signals, an application specific integrated circuit (ASIC) having appropriate combinational logic gates, a programmable gate array(s) (PGA), a field programmable gate array (FPGA), etc.
The method of the present invention is configured to postpone audio compression until analysis of the audio data is complete. This delay allows the system to apply the analytic tools to a truer and clearer hi-fidelity signal. The system employed in connection with the present invention also minimizes audio distortion, increases fidelity, eliminates gain control and requires no additional filtering of the signal.
As shown in
The telephonic communication 2 being analyzed can be one of numerous calls stored within a contact center server 12, or communicated to a contact center during a given time period. Accordingly, the present method contemplates that the telephonic communication 2 being subjected to analysis is selected from the plurality of telephonic communications. The selection criteria for determining which communication should be analyzed may vary. For example, the communications coming into a contact center can be automatically categorized into a plurality of call types using an appropriate algorithm. For example, the system may employ a word-spotting algorithm that categorizes communications 2 into particular types or categories based on words used in the communication. In one embodiment, each communication 2 is automatically categorized as a service call type (e.g., a caller requesting assistance for servicing a previously purchased product), a retention call type (e.g., a caller expressing indignation, or having a significant life change event), or a sales call type (e.g., a caller purchasing an item offered by a seller). In one scenario, it may be desirable to analyze all of the “sales call type” communications received by a contact center during a predetermined time frame. In that case, the user would analyze each of the sales call type communications from that time period by applying the predetermined psychological behavioral model to each such communication.
Alternatively, the communications 2 may be grouped according to customer categories, and the user may desire to analyze the communications 2 between the call center and communicants within a particular customer category. For example, it may be desirable for a user to perform an analysis only of a “platinum customers” category, consisting of high end investors, or a “high volume distributors” category comprised of a user's best distributors.
In one embodiment the telephonic communication 2 is telephone call in which a telephonic signal is transmitted. As many be seen in
When analyzing voice data, it is preferable to work from a true and clear hi-fidelity signal. This is true both in instances in which the voice data is being translated into a text format for analysis using a linguistic-based psychological behavioral model thereto, or in instance in which a linguistic-based psychological behavioral model is being applied directly to an audio waveform, audio stream or file containing voice data.
The PBX switch 205 provides an interface between the PSTN 203 and a local network. Preferably, the interface is controlled by software stored on a telephony server 207 coupled to the PBX switch 205. The PBX switch 205, using interface software, connects trunk and line station interfaces of the public switch telephone network 203 to stations of a local network or other peripheral devices contemplated by one skilled in the art. Further, in another embodiment, the PBX switch may be integrated within telephony server 207. The stations may include various types of communication devices connected to the network, including the telephony server 207, a recording server 209, telephone stations 211, and client personal computers 213 equipped with telephone stations 215. The local network may further include fax machines and modems.
Generally, in terms of hardware architecture, the telephony server 207 includes a processor, memory, and one or more input and/or output (I/O) devices (or peripherals) that are communicatively coupled via a local interface. The processor can be any custom-made or commercially available processor, a central processing unit (CPU), an auxiliary processor among several processors associated with the telephony server 207, a semiconductor based microprocessor (in the form of a microchip or chip set), a macroprocessor, or generally any device for executing software instructions. The memory of the telephony server 207 can include any one or a combination of volatile memory elements (e.g., random access memory (RAM, such as DRAM, SRAM, SDRAM, etc.)) and nonvolatile memory elements (e.g., ROM, hard drive, tape, CDROM, etc.). The telephony server 207 may further include a keyboard and a mouse for control purposes, and an attached graphic monitor for observation of software operation.
The telephony server 207 incorporates PBX control software to control the initiation and termination of connections between stations and via outside trunk connections to the PSTN 203. In addition, the software may monitor the status of all telephone stations 211 in real-time on the network and may be capable of responding to telephony events to provide traditional telephone service. This may include the control and generation of the conventional signaling tones such as dial tones, busy tones, ring back tones, as well as the connection and termination of media streams between telephones on the local network. Further, the PBX control software may use a multi-port module 223 and PCs to implement standard PBX functions such as the initiation and termination of telephone calls, either across the network or to outside trunk lines, the ability to put calls on hold, to transfer, park and pick up calls, to conference multiple callers, and to provide caller ID information. Telephony applications such as voice mail and auto attendant may be implemented by application software using the PBX as a network telephony services provider.
The control processor 221 may include buffer storage and control logic to convert media streams from one format to another, if necessary, between the trunk interface 217 and local network. The trunk interface 217 provides interconnection with the trunk circuits of the PSTN 203. The local network interface 219 provides conventional software and circuitry to enable the telephony server 207 to access the local network. The buffer RAM and control logic implement efficient transfer of media streams between the trunk interface 217, the telephony server 207, the digital signal processor 225, and the local network interface 219.
The trunk interface 217 utilizes conventional telephony trunk transmission supervision and signaling protocols required to interface with the outside trunk circuits from the PSTN 203. The trunk lines carry various types of telephony signals such as transmission supervision and signaling, audio, fax, or modem data to provide plain old telephone service (POTS). In addition, the trunk lines may carry other communication formats such T1, ISDN or fiber service to provide telephony or multimedia data images, video, text or audio.
The control processor 221 manages real-time telephony event handling pertaining to the telephone trunk line interfaces, including managing the efficient use of digital signal processor resources for the detection of caller ID, DTMF, call progress and other conventional forms of signaling found on trunk lines. The control processor 221 also manages the generation of telephony tones for dialing and other purposes, and controls the connection state, impedance matching, and echo cancellation of individual trunk line interfaces on the multi-port PSTN module 223.
Preferably, conventional PBX signaling is utilized between trunk and station, or station and station, such that data is translated into network messages that convey information relating to real-time telephony events on the network, or instructions to the network adapters of the stations to generate the appropriate signals and behavior to support normal voice communication, or instructions to connect voice media streams using standard connections and signaling protocols. Network messages are sent from the control processor 221 to the telephony server 207 to notify the PBX software in the telephony server 207 of real-time telephony events on the attached trunk lines. Network messages are received from the PBX Switch 205 to implement telephone call supervision and may control the set-up and elimination of media streams for voice transmission.
The local network interface 219 includes conventional circuitry to interface with the local network. The specific circuitry is dependent on the signal protocol utilized in the local network. In one embodiment, the local network may be a local area network (LAN) utilizing IP telephony. IP telephony integrates audio and video stream control with legacy telephony functions and may be supported through the H.323 protocol. H.323 is an International Telecommunication Union-Telecommunications protocol used to provide voice and video services over data networks. H.323 permits users to make point-to-point audio and video phone calls over a local area network. IP telephony systems can be integrated with the public telephone system through a local network interface 219, such as an IP/PBX-PSTN gateway, thereby allowing a user to place telephone calls from an enabled computer. For example, a call from an IP telephony client to a conventional telephone would be routed on the LAN to the IP/PBX-PSTN gateway. The IP/PBX-PSTN gateway translates H.323 protocol to conventional telephone protocol and routes the call over the conventional telephone network to its destination. Conversely, an incoming call from the PSTN 203 is routed to the IP/PBX-PSTN gateway and translates the conventional telephone protocol to H.323 protocol.
As noted above, PBX trunk control messages are transmitted from the telephony server 207 to the control processor 221 of the multi-port PSTN. In contrast, network messages containing media streams of digital representations of real-time voice are transmitted between the trunk interface 217 and local network interface 219 using the digital signal processor 225. The digital signal processor 225 may include buffer storage and control logic. Preferably, the buffer storage and control logic implement a first-in-first-out (FIFO) data buffering scheme for transmitting digital representations of voice audio between the local network to the trunk interface 217. It is noted that the digital signal processor 225 may be integrated with the control processor 221 on a single microprocessor.
The digital signal processor 225 may include a coder/decoder (CODEC) connected to the control processor 221. The CODEC may be a type TCM29c13 integrated circuit made by Texas Instruments, Inc. In one embodiment, the digital signal processor 225 receives an analog or digital voice signal from a station within the network or from the trunk lines of the PSTN 203. The CODEC converts the analog voice signal into in a digital from, such as digital data packets. It should be noted that the CODEC is not used when connection is made to digital lines and devices. From the CODEC, the digital data is transmitted to the digital signal processor 225 where telephone functions take place. The digital data is then passed to the control processor 221 which accumulates the data bytes from the digital signal processor 225. It is preferred that the data bytes are stored in a first-in-first-out (FIFO) memory buffer until there is sufficient data for one data packet to be sent according to the particular network protocol of the local network. The specific number of bytes transmitted per data packet depends on network latency requirements as selected by one of ordinary skill in the art. Once a data packet is created, the data packet is sent to the appropriate destination on the local network through the local network interface 219. Among other information, the data packet contains a source address, a destination address, and audio data. The source address identifies the location the audio data originated from and the destination address identifies the location the audio data is to be sent.
The system permits bi-directional communication by implementing a return path allowing data from the local network, through the local network interface 219, to be sent to the PSTN 203 through the multi-line PSTN trunk interface 217. Data streams from the local network are received by the local network interface 219 and translated from the protocol utilized on the local network to the protocol utilized on the PSTN 203. The conversion of data may be performed as the inverse operation of the conversion described above relating to the IP/PBX-PSTN gateway. The data stream is restored in appropriate form suitable for transmission through to either a connected telephone 211, 215 or an interface trunk 217 of the PSTN module 223, or a digital interface such as a T1 line or ISDN. In addition, digital data may be converted to analog data for transmission over the PSTN 203.
Generally, the PBX switch of the present invention may be implemented with hardware or virtually. A hardware PBX has equipment located local to the user of the PBX system. The PBX switch 205 utilized may be a standard PBX manufactured by Avaya, Siemens AG, NEC, Nortel, Toshiba, Fujitsu, Vodavi, Mitel, Ericsson, Panasonic, or InterTel. In contrast, a virtual PBX has equipment located at a central telephone service provider and delivers the PBX as a service over the PSTN 203.
As illustrated in
Generally, hardware architecture is the same as that discussed above and shown in
As noted above, the recording server 209 incorporates recording software for recording and separating a signal based on the source address and/or destination address of the signal. The method utilized by the recording server 209 depends on the communication protocol utilized on the communication lines to which the recording server 209 is coupled. In the communication system contemplated by the present invention, the signal carrying audio data of a communication between at least two users may be an analog signal or a digital signal in the form of a network message. In one embodiment, the signal is an audio data transmitted according to a signaling protocol, for example the H.323 protocol described above.
An example of a communication between an outside caller and a call center agent utilizing the present system 200 is illustrated in
Similar to the process described above, when the call center agent speaks, their voice is digitized (if needed) and converted into digital data packet 235 according to the communication protocol utilized on the local network. The data packet 235 comprises a source address identifying the address of the call center agent, a destination address identifying the address of the outside caller, and second constituent audio data comprising at least a portion of the call center agent's voice. The data packet 235 is received by the local network interface 219 and translated from the communication protocol utilized on the local network to the communication protocol utilized on the PSTN 203. The conversion of data can be performed as described above. The data packet 235 is restored in appropriate form suitable for transmission through to either a connected telephone 211, 215 or a interface trunk 217 of the PSTN module 223, or a digital interface such as a T1 line or ISDN. In addition, digital data can be converted to analog data for transmission through the PSTN 203.
The recording server 209 receives either a data packet 235 comprising: the source address identifying the address of the outside caller, a destination address identifying the address of the call center agent, and the first constituent audio data comprising at least a portion of the outside callers voice; or a data packet 235 comprising a source address identifying the address of the call center agent, a destination address identifying the address of the outside caller, and second constituent audio data comprising at least a portion of the customer's agent voice. It is understood by one of ordinary skill in the art that the recording server 209 is programmed to identify the communication protocol utilized by the local network and extract the audio data within the data packet 235. In one embodiment, the recording server 209 can automatically identify the utilized communication protocol from a plurality of communication protocols. The plurality of communication protocols can be stored in local memory or accessed from a remote database.
The recording server 209 comprises recording software to record the communication session between the outside caller and the call center agent in a single data file in a stereo format. The first data file 241 has at least a first audio track 237 and a second audio track 237. Once a telephone connection is established between an outside caller and a call center agent, the recording software creates a first data file 241 to record the communication between the outside caller and the call center agent. It is contemplated that the entire communication session or a portion of the communication session can be recorded.
Upon receiving the data packet 235, the recording server 209 determines whether to record the audio data contained in the data packet 235 in either the first audio track 237 or the second audio track 239 of the first data file 241 as determined by the source address, destination address, and/or the audio data contained within the received data packet 235. Alternatively, two first data files can be created, wherein the first audio track is recorded to the one of the first data file and the second audio track is recorded to the second first data file. In one embodiment, if the data packet 235 comprises a source address identifying the address of the outside caller, a destination address identifying the address of the call center agent, and first constituent audio data, the first constituent audio data is recorded on the first audio track 237 of the first data file 241. Similarly, if the data packet 235 comprises a source address identifying the address of the call center agent, a destination address identifying the address of the outside caller, and second constituent audio data, the second constituent audio data is recorded on the second audio track 239 of the first data file 241. It should be noted the first and second constituent audio data can be a digital or analog audio waveform or a textual translation of the digital or analog waveform. The recording process is repeated until the communication link between the outside caller and call center agent is terminated.
As noted above, the recording server 209 can be connected to the trunk lines of the PSTN 203 as seen in
As shown in
Further, as illustrated in
It is known in the art that “cradle-to-grave” recording may be used to record all information related to a particular telephone call from the time the call enters the contact center to the later of: the caller hanging up or the agent completing the transaction. All of the interactions during the call are recorded, including interaction with an IVR system, time spent on hold, data keyed through the caller's key pad, conversations with the agent, and screens displayed by the agent at his/her station during the transaction.
As shown in
Even with conventional audio mining technology, application of linguistic-based psychological behavioral models directly to an audio file can be very difficult. In particular, disparities in dialect, phonemes, accents and inflections can impede or render burdensome accurate identification of words. And while it is contemplated by the present invention that mining and analysis in accordance with the present invention can be applied directly to voice data configured in audio format, in a preferred embodiment of the present invention, the voice data to be mined and analyzed is first translated into a text file. It will be understood by those of skill that the translation of audio to text and subsequent data mining may be accomplished by systems known in the art. For example, the method of the present invention may employ software such as that sold under the brand name Audio Mining SDK by Scansoft, Inc., or any other audio mining software suitable for such applications.
As shown in
[According to a one embodiment of the present invention, the psychological behavioral model used to analyze the voice data is the Process Communication Model® (“PCM”) developed by Dr. Taibi Kahler. PCM is a psychological behavioral analytic tool which presupposes that all people fall primarily into one of six basic personality types: Reactor, Workaholic, Persister, Dreamer, Rebel and Promoter. Although each person is one of these six types, all people have parts of all six types within them arranged like a six-tier configuration. Each of the six types learns differently, is motivated differently, communicates differently, and has a different sequence of negative behaviors they engage in when they are in distress. Importantly, according to PCM, each personality type of PCM responds positively or negatively to communications that include tones or messages commonly associated with another of the PCM personality types. Thus, an understanding of a communicant's PCM personality type offers guidance as to an appropriate responsive tone or message or wording.
According to the PCM Model the following behavioral characteristics are associated with the respective personality types:
PROCESS COMMUNICATION MODEL (PCM) PERSONALITY TYPE BEHAVIORAL CHARACTERISTICS Reactors compassionate, sensitive, and warm; great “people skills” and enjoy working with groups of people Workaholics responsible, logical, and organized conscientious, dedicated, and observant; tend to Persisters follow the rules and expect others to follow them Dreamers reflective, imaginative, and calm Rebels creative, spontaneous, and playful Promoters resourceful, adaptable, and charming
These behavioral characteristics may be categorized by words, tones, gestures, postures and facial expressions, can be observed objectively with significantly high interjudge reliability.
According to one embodiment shown in
MODEL (PCM) PERSONALITY TYPE
In another embodiment, the present method mines for such significant words within the merged second data file 247 described above, and apply PCM to the identified words. Alternatively, the first data file 241 can be mined for significant words.
As shown in
The resultant behavioral assessment data 55 is stored in a database so that it may subsequently be used to comparatively analyze against behavioral assessment data derived from analysis of the other of the first and second constituent voice data 56. The software considers the speech segment patterns of all parties in the dialog as a whole to refine the behavioral and distress assessment data of each party, making sure that the final distress and behavioral results are consistent with patterns that occur in human interaction. Alternatively, the raw behavioral assessment data 55 derived from the analysis of the single voice data may be used to evaluate qualities of a single communicant (e.g., the customer or agent behavioral type, etc.). The results generated by analyzing voice data through application of a psychological behavioral model to one or both of the first and second constituent voice data can be graphically illustrated as discussed in further detail below.
It should be noted that [, although one preferred embodiment of the present invention uses PCM as a linguistic-based psychological behavioral model,] it is contemplated that any known linguistic-based psychological behavioral model be employed without departing from the present invention. It is also contemplated that more than one linguistic-based psychological behavioral model be used to analyze one or both of the first and second constituent voice data.
In addition to the behavioral assessment of voice data, the method of the present invention may also employ distress analysis to voice data. As may be seen in
As shown in
According to a preferred embodiment of the invention as shown in
Generally, call assessment data is comprised of behavioral assessment data, phone event data and distress assessment data. The resultant call assessment data may be subsequently viewed to provide an objective assessment or rating of the quality, satisfaction or appropriateness of the interaction between an agent and a customer. In the instance in which the first and second constituent voice data are comparatively analyzed, the call assessment data may generate resultant data useful for characterizing the success of the interaction between a customer and an agent.
Thus, as shown in
The software also includes a code segment for separately applying a non-linguistic based analytic tool to each of the separated first and second constituent voice data, and to generate phone event data corresponding to the analyzed voice data 50. A code segment translates each of the separated first and second constituent voice data into text format and stores the respective translated first and second constituent voice data in a first and second text file 52. A code segment analyzes the first and second text files by applying a predetermined linguistic-based psychological behavioral model thereto 54. The code segment generates either or both of behavioral assessment data and distress assessment data corresponding to each of the analyzed first and second constituent voice data 54.
A code segment is also provided for generating call assessment data 56. The call assessment data is resultant of the comparative analysis of the behavioral assessment data and distress assessment data corresponding to the analyzed first voice data and the behavioral assessment data and distress assessment data corresponding to the analyzed second voice data. A code segment then transmits an output of event data corresponding to at least one identifying indicia (e.g., call type, call time, agent, customer, etc.) 58. This event data is comprised of a call assessment data corresponding to at least one identifying indicia (e.g., a CSR name, a CSR center identifier, a customer, a customer type, a call type, etc.) and at least one predetermined time interval. Now will be described in detail the user interface for accessing and manipulating the event data of an analysis.
In one embodiment of the present invention shown in
The method and system of the present invention is useful in improving the quality of customer interactions with agents and ultimately customer relationships. In use, a customer wishing to engage in a service call, a retention call or a sales will call into (or be called by) a contact center. When the call enters the contact center it will be routed by appropriate means to a call center agent. As the interaction transpires, the voice data will be recorded as described herein. Either contemporaneously with the interaction, or after the call interaction has concluded, the recorded voice data will be analyzed as described herein. The results of the analysis will generate call assessment data comprised of behavioral assessment data, distress assessment data and phone event data. This data may be subsequently used by a supervisor or trainer to evaluate an agent, or take other remedial action such as call back the customer, etc. Also, graphical and pictorial analysis of the resultant call assessment data (and event data) will be accessible through a portal by a subsequent user (e.g., a supervisor, training instructor or monitor) through a graphical user interface.
A user of the system 1 described above interact with the system 1 via a unique graphical user interface (“GUI”) 400. The GUI 400 enables the user to navigate through the system 1 to obtain desired reports and information regarding the caller interaction events stored in memory. The GUI 400 can be part of a software program residing in whole or in part in the a computer 12, or it may reside in whole or in part on a server coupled to a computer 12 via a network connection, such as through the Internet or a local or wide area network (LAN or WAN). Moreover, a wireless connection can be used to link to the network.
In the embodiment shown in
As shown in
The computer program associated with the present invention can be utilized to generate a large variety of reports relating to the recorded call interaction events, the statistical analysis of each event and the analysis of the event from the application of the psychological model. The GUI 400 is configured to facilitate a user's request for a specific reports and to visually display the Reports on the user's display.
The REVIEW tab 412 enables the user to locate one or more caller interaction events (a caller interaction event is also herein referred to as a “call”) stored in the memory. The REVIEW tab 412 includes visual date fields or links 416, 418 for inputting a “from” and “to” date range, respectively. Clicking on the links 416, 418 will call a pop-up calendar for selecting a date. A drop down menu or input field for entering the desired date can also be used.
The caller interaction events are divided into folders and listed by various categories. The folders can be identified or be sorted by the following event types: upset customer/issue unresolved; upset customer/issued resolved; program dissatisfaction; long hold/silence (e.g., caller is placed on hold for greater than a predetermined time—e.g., 90 seconds—or there is a period of silence greater than a predetermined amount of time—e.g., 30 seconds); early hold (i.e., customer is placed on hold within a predetermined amount of time—e.g., 30 seconds—of initiating a call); no authentication (i.e., the agent does not authorize or verify an account within a predetermined time—e.g., the first three minutes of the call); inappropriate response (e.g., the agent exhibits inappropriate language during the call); absent agent (i.e., incoming calls where the agent does not answer the call); long duration for call type (i.e., calls that are a predetermined percentage over—e.g., 150%—the average duration for a given call type); and transfers (i.e., calls that end in a transfer). The categories include: customers, CSR agents, and customer service events.
The REVIEW tab 412 includes a visual link to a customers folder 420. This includes a list of calls subdivided by customer type. The customer folder 420 may include subfolders for corporate subsidiaries, specific promotional programs, or event types (i.e., upset customer/issue unresolved, etc.).
The REVIEW tab 412 also includes a visual link to call center or CSR agent folders 422. This includes a list of calls divided by call center or CSR agents. The initial breakdown is by location, followed by a list of managers, and then followed by the corresponding list of agents. The REVIEW tab 412 also includes a visual link to a customer service folders 424. This includes a list of calls subdivided by caller events, call center or CSR agent, and other relevant events.
The REVIEW tab 412 also includes a visual SEARCH link 426 to enable the user to search for calls based on a user-defined criteria. This include the date range as discussed above. Additionally, the user can input certain call characteristics or identifying criteria. For example, the user can input a specific call ID number and click the SEARCH link 426. This returns only the desired call regardless of the date of the call. The user could choose an agent from a drop down menu or list of available agents. This returns all calls from the selected agent in the date range specified. The user could also choose a caller (again from a drop down menu or list of available callers). This returns all calls from the selected caller(s) within the date range.
The results from the search are visually depicted as a list of calls 428 as shown in
The call page 432 also includes a conversation visual field 434 for displaying a time-based representation of characteristics of the call based on the psychological behavioral model. The call page 432 displays a progress bar 436 that illustrates call events marked with event data shown as, for example, colored points and colored line segments. A key 440 is provided explaining the color-coding.
The call page 432 further includes visual control elements for playing the recorded call. These include: BACK TO CALL LIST 442; PLAY 444; PAUSE 446; STOP 448; RELOAD 450; REFRESH DATA 452 and START/STOP/DURATION 454. the START/STOP/DURATION 454 reports the start, stop and duration of distinct call segments occurring in the call. The distinct call segments occur when there is a transition from a caller led conversation to an agent led conversation—or visa versa—and/or the nature of the discussion shifts to a different topic).
The REVIEW tab 412 also provides a visual statistics link 456 for displaying call statistics as shown in
The REVIEW tab 412 also provides a comments link 458. This will provide a supervisor with the ability to document comments for each call that can be used in follow-up discussions with the appropriate agent.
The METRICS tab 414 allows the user to generate and access Reports of caller interaction event information. The METRICS tab 414 includes two folders: a standard Reports folder 460 and an on-demand Reports folder. The standard reports folder 460 includes pre-defined call performance reports generated by the analytics engine for daily, weekly, monthly, quarterly, or annual time intervals. These Reports are organized around two key dimensions: caller satisfaction and agent performance. The on-demand reports folder 462 includes pre-defined call performance reports for any time interval based around two key dimensions: caller and agent.
The GUI 400 facilitates generating summary or detailed Reports as shown in
A CLIENT SATISFACTION REPORT 466 is shown in
The CLIENT SATISFACTION REPORT 466 includes a number of calls column 470 (total number of calls analyzed for the associated client during the specified reporting interval), an average duration column 472 (total analyzed talk time for all calls analyzed for the associated client divided by the total number of calls analyzed for the client), a greater than (“>”) 150% duration column 474 (percentage of calls for a client that exceed 150% of the average duration for all calls per call type), a greater than 90 second hold column 476 (percentage of calls for a client where the call center agent places the client on hold for greater than 90 seconds), a greater than 30 second silence column 478 (percentage of calls for a client where there is a period of continuous silence within a call greater than 30 seconds), a customer dissatisfaction column 480 (percentage of calls for a client where the caller exhibits dissatisfaction or distress—these calls are in the dissatisfied caller and upset caller/issue unresolved folders), a program dissatisfaction column 482 (percentage of calls where the caller exhibits dissatisfaction with the program), and a caller satisfaction column 484 (a composite score that represents overall caller satisfaction for all calls for the associated client).
The caller satisfaction column 484 is defined by a weighted percentage of the following criteria as shown in
The user can generate a summary by CALL TYPE REPORT 486 as shown in
The user can generate a NON-ANALYZED CALLS REPORT 492 as shown in
As shown in
A PROGRAM REPORT 498 is shown in
The user can also generate a number of CALL CENTER or CSR AGENT REPORTS. These include the following summary reports: corporate summary by location; CSR agent performance; and non-analyzed calls. Additionally, the user can generate team reports. The team Reports can be broken down by location, team or agent.
A CORPORATE SUMMARY BY LOCATION REPORT 502 is shown in
The values 526 in the score column 524 are based on the weighted criteria shown in
A CSR PERFORMANCE REPORT 528 is shown in
A LOCATION BY TEAM REPORT 532 is shown in
While the specific embodiments have been illustrated and described, numerous modifications come to mind without significantly departing from the spirit of the invention, and the scope of protection is only limited by the scope of the accompanying Claims.
|Cited Patent||Filing date||Publication date||Applicant||Title|
|US3851121||Dec 10, 1973||Nov 26, 1974||Gen Telephone Co Of California||Automatic remote service monitoring system|
|US3855416||Dec 1, 1972||Dec 17, 1974||Fuller F||Method and apparatus for phonation analysis leading to valid truth/lie decisions by fundamental speech-energy weighted vibratto component assessment|
|US3855418||Dec 1, 1972||Dec 17, 1974||Fuller F||Method and apparatus for phonation analysis leading to valid truth/lie decisions by vibratto component assessment|
|US3971034||Sep 5, 1972||Jul 20, 1976||Dektor Counterintelligence And Security, Inc.||Physiological response analysis method and apparatus|
|US4093821||Jun 14, 1977||Jun 6, 1978||John Decatur Williamson||Speech analyzer for analyzing pitch or frequency perturbations in individual speech pattern to determine the emotional state of the person|
|US4142067||Apr 11, 1978||Feb 27, 1979||Williamson John D||Speech analyzer for analyzing frequency perturbations in a speech pattern to determine the emotional state of a person|
|US4377158||Feb 2, 1981||Mar 22, 1983||Ernest H. Friedman||Method and monitor for voice fluency|
|US4490840||Mar 30, 1982||Dec 25, 1984||Jones Joseph M||Oral sound analysis method and apparatus for determining voice, speech and perceptual styles|
|US4694483||Jun 2, 1986||Sep 15, 1987||Innings Telecom Inc.||Computerized system for routing incoming telephone calls to a plurality of agent positions|
|US5148483||Oct 18, 1990||Sep 15, 1992||Silverman Stephen E||Method for detecting suicidal predisposition|
|US5148493||Feb 21, 1990||Sep 15, 1992||Bruney Paul F||Loudspeaker structure|
|US5206903||Dec 26, 1990||Apr 27, 1993||At&T Bell Laboratories||Automatic call distribution based on matching required skills with agents skills|
|US5239460||Jan 3, 1991||Aug 24, 1993||At&T Bell Laboratories||Arrangement for motivating telemarketing agents|
|US5299260||Jul 29, 1993||Mar 29, 1994||Unifi Communications Corporation||Telephone call handling system|
|US5467391||Jul 14, 1994||Nov 14, 1995||Digital Systems International, Inc.||Integrated intelligent call blending|
|US5500795||Jul 6, 1994||Mar 19, 1996||Teknekron Infoswitch Corporation||Method and system for monitoring and controlling the performance of a call processing center|
|US5535256||May 3, 1995||Jul 9, 1996||Teknekron Infoswitch Corporation||Method and system for automatically monitoring the performance quality of call center service representatives|
|US5559875||Jul 31, 1995||Sep 24, 1996||Latitude Communications||Method and apparatus for recording and retrieval of audio conferences|
|US5561707||Oct 18, 1993||Oct 1, 1996||Ronald A. Katz Technology Licensing L.P.||Telephonic-interface statistical analysis system|
|US5577254||Mar 15, 1994||Nov 19, 1996||Bull Hn Information Systems Inc.||Method and apparatus for capturing the presentation of an interactive user session, monitoring, replaying and joining sessions|
|US5590171||Aug 21, 1995||Dec 31, 1996||Bellsouth Corporation||Method and apparatus for communications monitoring|
|US5590188||Feb 17, 1995||Dec 31, 1996||Iex Corporation||Rules-based call routing|
|US5594790||Jun 1, 1994||Jan 14, 1997||Davox Corporation||Method for selecting and controlling the automatic dialing of a call record campaign|
|US5594791||Oct 5, 1994||Jan 14, 1997||Inventions, Inc.||Method and apparatus for providing result-oriented customer service|
|US5621789||Sep 1, 1993||Apr 15, 1997||Teknekron Infoswitch Corporation||Method and system for integrating a plurality of call center agent performance enhancement modules|
|US5633916||Dec 30, 1994||May 27, 1997||Unisys Corporation||Universal messaging service using single voice grade telephone line within a client/server architecture|
|US5646981||Jan 10, 1995||Jul 8, 1997||Lucent Technologies Inc.||Arrangement for automated delivery of voice-mail messages for software processes|
|US5696811||Jun 20, 1996||Dec 9, 1997||Teknekron Infoswitch Corporation||Method and system for automatically monitoring the performance quality of call center service representatives|
|US5710884||Mar 29, 1995||Jan 20, 1998||Intel Corporation||System for automatically updating personal profile server with updates to additional user information gathered from monitoring user's electronic consuming habits generated on computer during use|
|US5712954||Aug 23, 1995||Jan 27, 1998||Rockwell International Corp.||System and method for monitoring audio power level of agent speech in a telephonic switch|
|US5717742||May 7, 1996||Feb 10, 1998||Vmx, Inc.||Electronic mail system having integrated voice messages|
|US5721827||Oct 2, 1996||Feb 24, 1998||James Logan||System for electrically distributing personalized information|
|US5724420||Jun 24, 1996||Mar 3, 1998||Rockwell International Corporation||Automatic call distribution with answer machine detection apparatus and method|
|US5732216||Oct 2, 1996||Mar 24, 1998||Internet Angles, Inc.||Audio message exchange system|
|US5734890||Aug 22, 1995||Mar 31, 1998||Gartner Group||System and method for analyzing procurement decisions and customer satisfaction|
|US5737405||Jul 25, 1995||Apr 7, 1998||Rockwell International Corporation||Apparatus and method for detecting conversation interruptions in a telephonic switch|
|US5757904||Feb 5, 1996||May 26, 1998||Lucent Technologies Inc.||Context-sensitive presentation of information to call-center agents|
|US5764728||Jun 28, 1996||Jun 9, 1998||Mitel Corporation||Silent monitoring agent IDs|
|US5768513||Jun 27, 1996||Jun 16, 1998||At&T Corp.||Multimedia messaging using the internet|
|US5784452||Apr 18, 1996||Jul 21, 1998||Davox Corporation||Telephony call center with agent work groups|
|US5790798||May 31, 1996||Aug 4, 1998||Witness Systems, Inc.||Method and apparatus for simultaneously monitoring computer user screen and telephone activity from a remote location|
|US5799063||Aug 15, 1996||Aug 25, 1998||Talk Web Inc.||Communication system and method of providing access to pre-recorded audio messages via the Internet|
|US5809250||Oct 23, 1996||Sep 15, 1998||Intel Corporation||Methods for creating and sharing replayable modules representive of Web browsing session|
|US5815551||Jun 7, 1995||Sep 29, 1998||Ronald A. Katz Technology Licensing, Lp||Telephonic-interface statistical analysis system|
|US5818907||Aug 4, 1997||Oct 6, 1998||Teknekron Infoswitch Corporation||Method and system for automatically monitoring the performance quality of call center service representatives|
|US5818909||Sep 27, 1996||Oct 6, 1998||Van Berkum; Paul E.||Agent speech detector system and method for use with a telephonic switch|
|US5822306||Jul 19, 1996||Oct 13, 1998||British Telecommunications Public Limited Company||Multimedia switching apparatus|
|US5822400||Aug 19, 1996||Oct 13, 1998||Davox Corporation||Call record scheduling system and method|
|US5822410||Jan 11, 1996||Oct 13, 1998||Gte Telecom Services Inc||Churn amelioration system and method therefor|
|US5822744||Jul 15, 1996||Oct 13, 1998||Kesel; Brad||Consumer comment reporting apparatus and method|
|US5825869||Apr 23, 1996||Oct 20, 1998||Siemens Business Communication Systems, Inc.||Call management method and system for skill-based routing|
|US5828730||Apr 10, 1996||Oct 27, 1998||Sten-Tel, Inc.||Method and apparatus for recording and managing communications for transcription|
|US5841966||Apr 4, 1996||Nov 24, 1998||Centigram Communications Corporation||Distributed messaging system|
|US5845290||Nov 25, 1996||Dec 1, 1998||Xaxon R&D Ltd.||File recording support apparatus and file recording support system for supporting recording of file on home page on internet and intranet|
|US5848396||Apr 26, 1996||Dec 8, 1998||Freedom Of Information, Inc.||Method and apparatus for determining behavioral profile of a computer user|
|US5854832||Jun 26, 1995||Dec 29, 1998||Rockwell International Corp.||Monitoring system and method used in automatic call distributor for timing incoming telephone calls|
|US5857175||Aug 11, 1995||Jan 5, 1999||Micro Enhancement International||System and method for offering targeted discounts to customers|
|US5859898||Sep 17, 1996||Jan 12, 1999||Nynex Science & Technology||Messaging architecture supporting digital and analog media|
|US5864616||Jun 28, 1996||Jan 26, 1999||Intel Corporation||System and method for providing call statistics in real time|
|US5870549||Oct 6, 1997||Feb 9, 1999||Bobo, Ii; Charles R.||Systems and methods for storing, delivering, and managing messages|
|US5875436||Aug 27, 1996||Feb 23, 1999||Data Link Systems, Inc.||Virtual transcription system|
|US5878384||Mar 29, 1996||Mar 2, 1999||At&T Corp||System and method for monitoring information flow and performing data collection|
|US5884032||Sep 25, 1995||Mar 16, 1999||The New Brunswick Telephone Company, Limited||System for coordinating communications via customer contact channel changing system using call centre for setting up the call between customer and an available help agent|
|US5884262||Mar 28, 1996||Mar 16, 1999||Bell Atlantic Network Services, Inc.||Computer network audio access and conversion system|
|US5894512||Jul 26, 1996||Apr 13, 1999||Ncr Corporation||Method and apparatus for routing voice and video calls to a group of agents|
|US5897616||Jun 11, 1997||Apr 27, 1999||International Business Machines Corporation||Apparatus and methods for speaker verification/identification/classification employing non-acoustic and/or acoustic models and databases|
|US5903641||Jan 28, 1997||May 11, 1999||Lucent Technologies Inc.||Automatic dynamic changing of agents' call-handling assignments|
|US5910107||May 30, 1997||Jun 8, 1999||First Opinion Corporation||Computerized medical diagnostic and treatment advice method|
|US5911776||Dec 18, 1996||Jun 15, 1999||Unisys Corporation||Automatic format conversion system and publishing methodology for multi-user network|
|US5914951||Apr 16, 1996||Jun 22, 1999||At&T Corp||System and method for controlling and monitoring communication between customers and customer service representatives|
|US5915001||Nov 14, 1996||Jun 22, 1999||Vois Corporation||System and method for providing and using universally accessible voice and speech data files|
|US5915011||Jun 20, 1997||Jun 22, 1999||Genesys Telecommunications Laboratories, Inc.||Statistically-predictive and agent-predictive call routing|
|US5923746||Sep 18, 1996||Jul 13, 1999||Rockwell International Corp.||Call recording system and method for use with a telephonic switch|
|US5926538||Feb 11, 1997||Jul 20, 1999||Genesys Telecommunications Labs, Inc||Method for routing calls to call centers based on statistical modeling of call behavior|
|US5930764||Aug 23, 1996||Jul 27, 1999||Citibank, N.A.||Sales and marketing support system using a customer information database|
|US5940476||Jun 28, 1996||Aug 17, 1999||Distributed Software Development, Inc.||System and method for identifying an unidentified caller|
|US5940494||Jul 12, 1995||Aug 17, 1999||Rafacz; Walter||Data display system and method for displaying real-time data relating to an automatic call distributor|
|US5940792||Aug 17, 1995||Aug 17, 1999||British Telecommunications Public Limited Company||Nonintrusive testing of telecommunication speech by determining deviations from invariant characteristics or relationships|
|US5943416||Feb 17, 1998||Aug 24, 1999||Genesys Telecommunications Laboratories, Inc.||Automated survey control routine in a call center environment|
|US5945989||Mar 25, 1997||Aug 31, 1999||Premiere Communications, Inc.||Method and apparatus for adding and altering content on websites|
|US5946375||May 12, 1997||Aug 31, 1999||Teknekron Infoswitch Corporation||Method and system for monitoring call center service representatives|
|US5946388||Feb 6, 1997||Aug 31, 1999||Walker Asset Management Limited Partnership||Method and apparatus for priority queuing of telephone calls|
|US5951643||Oct 6, 1997||Sep 14, 1999||Ncr Corporation||Mechanism for dependably organizing and managing information for web synchronization and tracking among multiple browsers|
|US5953389||Feb 20, 1997||Sep 14, 1999||Bell Atlantic Network Services, Inc.||Combination system for provisioning and maintaining telephone network facilities in a public switched telephone network|
|US5953406||May 20, 1997||Sep 14, 1999||Mci Communications Corporation||Generalized customer profile editor for call center services|
|US5964839||May 27, 1998||Oct 12, 1999||At&T Corp||System and method for monitoring information flow and performing data collection|
|US5978465||May 5, 1997||Nov 2, 1999||Aspect Telecommunications Corporation||Method and apparatus for allocating resources in a call center|
|US5987415||Jun 30, 1998||Nov 16, 1999||Microsoft Corporation||Modeling a user's emotion and personality in a computer user interface|
|US5991735||Aug 11, 1998||Nov 23, 1999||Be Free, Inc.||Computer program apparatus for determining behavioral profile of a computer user|
|US6003013||May 29, 1998||Dec 14, 1999||Harrah's Operating Company, Inc.||Customer worth differentiation by selective activation of physical instrumentalities within the casino|
|US6006188||Mar 19, 1997||Dec 21, 1999||Dendrite, Inc.||Speech signal processing for determining psychological or physiological characteristics using a knowledge base|
|US6009163||Jul 3, 1997||Dec 28, 1999||U S West, Inc.||Method and system for regulating incoming calls from multiple points of origination|
|US6014647||Jul 8, 1997||Jan 11, 2000||Nizzari; Marcia M.||Customer interaction tracking|
|US6021428||Jan 22, 1998||Feb 1, 2000||Genesys Telecommunications Laboratories, Inc.||Apparatus and method in improving e-mail routing in an internet protocol network telephony call-in-center|
|US6026397||May 22, 1996||Feb 15, 2000||Electronic Data Systems Corporation||Data analysis system and method|
|US6029153||Sep 11, 1997||Feb 22, 2000||Citibank, N.A.||Method and system for analyzing and handling the customer files of a financial institution|
|US6058163||May 12, 1997||May 2, 2000||Teknekron Infoswitch Corporation||Method and system for monitoring call center service representatives|
|US6064731||Oct 29, 1998||May 16, 2000||Lucent Technologies Inc.||Arrangement for improving retention of call center's customers|
|US6078891||Nov 24, 1997||Jun 20, 2000||Riordan; John||Method and system for collecting and processing marketing data|
|US6108711||Sep 11, 1998||Aug 22, 2000||Genesys Telecommunications Laboratories, Inc.||Operating system having external media layer, workflow layer, internal media layer, and knowledge base for routing media events between transactions|
|US6128380||Aug 24, 1998||Oct 3, 2000||Siemens Information And Communication, Networks, Inc.||Automatic call distribution and training system|
|US6151571||Aug 31, 1999||Nov 21, 2000||Andersen Consulting||System, method and article of manufacture for detecting emotion in voice signals through analysis of a plurality of voice signal parameters|
|US6173053||Apr 9, 1998||Jan 9, 2001||Avaya Technology Corp.||Optimizing call-center performance by using predictive data to distribute calls among agents|
|US6185534||Mar 23, 1998||Feb 6, 2001||Microsoft Corporation||Modeling emotion and personality in a computer user interface|
|US6195426||Dec 11, 1997||Feb 27, 2001||At&T Corp.||Service providing customized information to queuing customers|
|US6205215||Jul 1, 1998||Mar 20, 2001||Mci Communications Corporation||Method of and system for providing network-initiated multilingual operator assistance|
|US6212502||Jun 30, 1998||Apr 3, 2001||Microsoft Corporation||Modeling and projecting emotion and personality from a computer user interface|
|US6243684||Feb 19, 1999||Jun 5, 2001||Usada, Inc.||Directory assistance system and method utilizing a speech recognition system and a live operator|
|US6275806||Aug 31, 1999||Aug 14, 2001||Andersen Consulting, Llp||System method and article of manufacture for detecting emotion in voice signals by utilizing statistics for voice signal parameters|
|US6286030||Jul 10, 1998||Sep 4, 2001||Sap Aktiengesellschaft||Systems and methods for recording and visually recreating sessions in a client-server environment|
|US6289094||Oct 10, 1997||Sep 11, 2001||Genesys Telecommunications Laboratories, Inc.||External positivistic forward transfer in call routing systems|
|US6295353||Oct 7, 1998||Sep 25, 2001||Avaya Technology Corp.||Arrangement for efficiently updating status information of a network call-routing system|
|US6334110||Mar 10, 1999||Dec 25, 2001||Ncr Corporation||System and method for analyzing customer transactions and interactions|
|US6345094||Jun 8, 1998||Feb 5, 2002||Davox Corporation||Inbound/outbound call record processing system and method|
|US6353810||Aug 31, 1999||Mar 5, 2002||Accenture Llp||System, method and article of manufacture for an emotion detection system improving emotion recognition|
|US6363145||Aug 17, 1998||Mar 26, 2002||Siemens Information And Communication Networks, Inc.||Apparatus and method for automated voice analysis in ACD silent call monitoring|
|US6363346||Dec 22, 1999||Mar 26, 2002||Ncr Corporation||Call distribution system inferring mental or physiological state|
|US6366658||May 7, 1998||Apr 2, 2002||Mci Communications Corporation||Telecommunications architecture for call center services using advanced interactive voice responsive service node|
|US6366666||Dec 16, 1998||Apr 2, 2002||Avaya Technology Corp.||Adjustment of call selection to achieve target values for interval-based performance metrics in a call center|
|US6370574||Dec 16, 1998||Apr 9, 2002||Witness Systems, Inc.||Method and apparatus for simultaneously monitoring computer user screen and telephone activity from a remote location|
|US6389132||Oct 13, 1999||May 14, 2002||Avaya Technology Corp.||Multi-tasking, web-based call center|
|US6392666||Jul 21, 1999||May 21, 2002||Avaya Technology Corp.||Telephone call center monitoring system allowing real-time display of summary views and interactively defined detailed views|
|US6404883||Nov 9, 1998||Jun 11, 2002||Intel Corporation||System and method for providing call statistics in real time|
|US6411687||Nov 10, 1998||Jun 25, 2002||Mitel Knowledge Corporation||Call routing based on the caller's mood|
|US6411708||Jun 2, 1998||Jun 25, 2002||Davox Corporation||System and method for purging a call list|
|US6424709||Mar 22, 1999||Jul 23, 2002||Rockwell Electronic Commerce Corp.||Skill-based call routing|
|US6434230||Feb 2, 1999||Aug 13, 2002||Avaya Technology Corp.||Rules-based queuing of calls to call-handling resources|
|US6434231||Jan 5, 2000||Aug 13, 2002||Genesys Telecommunications Laboratories, Inc.||Virtualized computer telephony integrated link for enhanced functionality in call centers|
|US6446119||Oct 29, 1997||Sep 3, 2002||Laslo Olah||System and method for monitoring computer usage|
|US6466663||Sep 30, 1997||Oct 15, 2002||Don Ravenscroft||Monitoring system client for a call center|
|US6480601||Nov 12, 1999||Nov 12, 2002||Concerto Software, Inc.||Voice and data transfer from outbound dialing to inbound ACD queue|
|US6480826||Aug 31, 1999||Nov 12, 2002||Accenture Llp||System and method for a telephonic emotion detection that provides operator feedback|
|US6490560||Mar 1, 2000||Dec 3, 2002||International Business Machines Corporation||Method and system for non-intrusive speaker verification using behavior models|
|US6510220||Mar 12, 1998||Jan 21, 2003||Witness Systems, Inc.||Method and apparatus for simultaneously monitoring computer user screen and telephone activity from a remote location|
|US6535601||Aug 27, 1998||Mar 18, 2003||Avaya Technology Corp.||Skill-value queuing in a call center|
|US6542156||Jul 21, 1999||Apr 1, 2003||Avaya Technology Corp.||Telephone call center monitoring system with integrated three-dimensional display of multiple split activity data|
|US6542602||Feb 14, 2000||Apr 1, 2003||Nice Systems Ltd.||Telephone call monitoring system|
|US6553112||Mar 11, 1998||Apr 22, 2003||Fujitsu Limited||Call center system|
|US6556976||Nov 10, 1999||Apr 29, 2003||Gershman, Brickner And Bratton, Inc.||Method and system for e-commerce and related data management, analysis and reporting|
|US6567504||Oct 23, 1999||May 20, 2003||Sigma Communications, Inc.||Automated calling system with database updating|
|US6567787||Aug 17, 1998||May 20, 2003||Walker Digital, Llc||Method and apparatus for determining whether a verbal message was spoken during a transaction at a point-of-sale terminal|
|US6574605||Nov 17, 1999||Jun 3, 2003||Citibank, N.A.||Method and system for strategic services enterprise workload management|
|US6598020||Sep 10, 1999||Jul 22, 2003||International Business Machines Corporation||Adaptive emotion and initiative generator for conversational systems|
|US6600821||Oct 26, 1999||Jul 29, 2003||Rockwell Electronic Commerce Corp.||System and method for automatically detecting problematic calls|
|US6601031||Jul 28, 2000||Jul 29, 2003||Lucent Technologies Inc.||Speech recognition front end controller to voice mail systems|
|US6611498||Sep 24, 1998||Aug 26, 2003||Worldcom, Inc.||Integrated customer web station for web based call management|
|US6628777||Nov 16, 1999||Sep 30, 2003||Knowlagent, Inc.||Method and system for scheduled delivery of training to call center agents|
|US6643622||Jun 4, 2001||Nov 4, 2003||Robert O. Stuart||Data retrieval assistance system and method utilizing a speech recognition system and a live operator|
|US6647372||Dec 2, 1999||Nov 11, 2003||Forecourt Communications Group||Method and apparatus for using prior activities to improve the probability of completing transactions for a customer in a retail environment|
|US6658388||Sep 10, 1999||Dec 2, 2003||International Business Machines Corporation||Personality generator for conversational systems|
|US6658391||Dec 30, 1999||Dec 2, 2003||Gary A. Williams||Strategic profiling|
|US6662156||Jan 24, 2001||Dec 9, 2003||Koninklijke Philips Electronics N.V.||Speech detection device having multiple criteria to determine end of speech|
|US6665644||Aug 10, 1999||Dec 16, 2003||International Business Machines Corporation||Conversational data mining|
|US6674447||Dec 6, 1999||Jan 6, 2004||Oridus, Inc.||Method and apparatus for automatically recording snapshots of a computer screen during a computer session for later playback|
|US6691073||Jun 16, 1999||Feb 10, 2004||Clarity Technologies Inc.||Adaptive state space signal separation, discrimination and recovery|
|US6700972||Aug 25, 1999||Mar 2, 2004||Verizon Corporate Services Group Inc.||System and method for processing and collecting data from a call directed to a call center|
|US6721417||Mar 24, 1998||Apr 13, 2004||Fujitsu Limited||Method and apparatus for controlling network automatic call distribution|
|US6721704||Aug 28, 2001||Apr 13, 2004||Koninklijke Philips Electronics N.V.||Telephone conversation quality enhancer using emotional conversational analysis|
|US6724887 *||Jan 24, 2000||Apr 20, 2004||Verint Systems, Inc.||Method and system for analyzing customer communications with a contact center|
|US6731307||Oct 30, 2000||May 4, 2004||Koninklije Philips Electronics N.V.||User interface/entertainment device that simulates personal interaction and responds to user's mental state and/or personality|
|US6731744||Apr 27, 1999||May 4, 2004||Sprint Communications Company, L.P.||Call processing system and service control point for handling calls to a call center|
|US6735298||Sep 3, 2002||May 11, 2004||Genesys Telecommunications Laboratoiries, Inc.||Call and data correspondence in a call-in center employing virtual restructuring for computer telephony integrated functionality|
|US6741697||Oct 20, 1998||May 25, 2004||International Business Machines Corporation||Telephone call centre performance evaluation|
|US6744877||Mar 8, 1999||Jun 1, 2004||Avaya Technology Corp.||Method and system for enterprise service balancing|
|US6760414||Dec 10, 1997||Jul 6, 2004||Keycorp||Personal computer banking system and method|
|US6760727||Dec 21, 1999||Jul 6, 2004||Convergys Cmg Utah, Inc.||System for customer contact information management and methods for using same|
|US6766012||Oct 20, 1999||Jul 20, 2004||Concerto Software, Inc.||System and method for allocating agent resources to a telephone call campaign based on agent productivity|
|US6788768||Dec 7, 1999||Sep 7, 2004||Microstrategy, Incorporated||System and method for real-time, personalized, dynamic, interactive voice services for book-related information|
|US6798876||Dec 29, 1999||Sep 28, 2004||At&T Corp.||Method and apparatus for intelligent routing of incoming calls to representatives in a call center|
|US6839671||Dec 19, 2000||Jan 4, 2005||British Telecommunications Public Limited Company||Learning of dialogue states and language model of spoken information system|
|US6853966||Apr 30, 2002||Feb 8, 2005||Sbc Technology Resources, Inc.||Method for categorizing, describing and modeling types of system users|
|US6864901||Feb 11, 2003||Mar 8, 2005||Academia Sinica||Real-time screen recording system|
|US6868154 *||Aug 2, 1999||Mar 15, 2005||Robert O. Stuart||System and method for providing a service to a customer via a communication link|
|US6868392||Jul 9, 1999||Mar 15, 2005||Fujitsu Limited||System and method for electronic shopping using an interactive shopping agent|
|US6959079||Feb 19, 2003||Oct 25, 2005||Nice Systems Ltd.||Telephone call monitoring system|
|US7010106||Aug 28, 2001||Mar 7, 2006||Nice Systems Ltd.||Digital recording of IP based distributed switching platform|
|US7010109||Mar 14, 2005||Mar 7, 2006||Nice Systems Ltd.||Digital recording of IP based distributed switching platform|
|US7027708||Dec 29, 2000||Apr 11, 2006||Etalk Corporation||System and method for reproducing a video session using accelerated frame playback|
|US7043745||Dec 29, 2000||May 9, 2006||Etalk Corporation||System and method for reproducing a video session using accelerated frame recording|
|US7184540 *||Nov 26, 2002||Feb 27, 2007||Rockwell Electronic Commerce Technologies, Llc||Personality based matching of callers to agents in a communication system|
|US7219138||Jan 31, 2002||May 15, 2007||Witness Systems, Inc.||Method, apparatus, and system for capturing data exchanged between a server and a user|
|US20010043685||Jun 8, 2001||Nov 22, 2001||Dictaphone Corporation||System and method for data recording|
|US20020002460||Aug 31, 1999||Jan 3, 2002||Valery Pertrushin||System method and article of manufacture for a voice messaging expert system that organizes voice messages based on detected emotions|
|US20020002464||Aug 31, 1999||Jan 3, 2002||Valery A. Petrushin||System and method for a telephonic emotion detection that provides operator feedback|
|US20020010587||Aug 31, 1999||Jan 24, 2002||Valery A. Pertrushin||System, method and article of manufacture for a voice analysis system that detects nervousness for preventing fraud|
|US20020111811||Feb 15, 2002||Aug 15, 2002||William Bares||Methods, systems, and computer program products for providing automated customer service via an intelligent virtual agent that is trained using customer-agent conversations|
|US20020133394||Apr 30, 2002||Sep 19, 2002||Sbc Technology Resources, Inc.||Method for categorizing, describing and modeling types of system users|
|US20020194002||Jul 12, 2002||Dec 19, 2002||Accenture Llp||Detecting emotions using voice signal analysis|
|US20030033145||Apr 10, 2001||Feb 13, 2003||Petrushin Valery A.||System, method, and article of manufacture for detecting emotion in voice signals by utilizing statistics for voice signal parameters|
|US20030033152||May 30, 2002||Feb 13, 2003||Cameron Seth A.||Language independent and voice operated information management system|
|US20030069780||Oct 5, 2001||Apr 10, 2003||Hailwood John W.||Customer relationship management|
|US20030072463||Oct 17, 2001||Apr 17, 2003||E-Lead Electronic Co., Ltd.||Sound-activated song selection broadcasting apparatus|
|US20030154092||May 16, 2001||Aug 14, 2003||Thierry Bouron||Method and system for behavioural simulation of a plurality of consumers, by multiagent simulation|
|US20040041830||Aug 29, 2003||Mar 4, 2004||Hui-Hwa Chiang||Method and apparatus for automatically recording snapshots of a computer screen during a computer session for later playback|
|US20040054715||Sep 16, 2002||Mar 18, 2004||Paul Cesario||Capturing and replaying internet application transactions using an embedded browser|
|US20040073569||Sep 27, 2002||Apr 15, 2004||Sbc Properties, L.P.||System and method for integrating a personal adaptive agent|
|US20040100507||Aug 24, 2001||May 27, 2004||Omri Hayner||System and method for capturing browser sessions and user actions|
|US20040101127||Nov 26, 2002||May 27, 2004||Dezonno Anthony J.||Personality based routing|
|US20040117185||Oct 20, 2003||Jun 17, 2004||Robert Scarano||Methods and apparatus for audio data monitoring and evaluation using speech recognition|
|US20040162724||Feb 11, 2003||Aug 19, 2004||Jeffrey Hill||Management of conversations|
|US20040181376||Jan 28, 2004||Sep 16, 2004||Wylci Fables||Cultural simulation model for modeling of agent behavioral expression and simulation data visualization methods|
|US20040190687||Mar 26, 2003||Sep 30, 2004||Aurilab, Llc||Speech recognition assistant for human call center operator|
|US20040249636||Jun 4, 2003||Dec 9, 2004||Ted Applebaum||Assistive call center interface|
|US20040249650||Jul 14, 2004||Dec 9, 2004||Ilan Freedman||Method apparatus and system for capturing and analyzing interaction based content|
|US20040264652||Jun 24, 2003||Dec 30, 2004||Erhart George W.||Method and apparatus for validating agreement between textual and spoken representations of words|
|US20050010411||Jul 9, 2003||Jan 13, 2005||Luca Rigazio||Speech data mining for call center management|
|US20050010415||May 24, 2004||Jan 13, 2005||Hagen David A.||Artificial intelligence dialogue processor|
|US20050018622||Aug 9, 2004||Jan 27, 2005||Nice Systems Ltd.||Method for forwarding and storing session packets according to preset and /or dynamic rules|
|US20050108383||Nov 4, 2003||May 19, 2005||Dehaas Ronald J.||Internet use monitoring system and method|
|US20050108775||Nov 13, 2003||May 19, 2005||Nice System Ltd||Apparatus and method for event-driven content analysis|
|US20050123115||Mar 14, 2005||Jun 9, 2005||Nice Systems, Ltd.||Digital recording of ip based distributed switching platform|
|US20060200520||May 26, 2005||Sep 7, 2006||Todd Vernon||System and method for record and playback of collaborative communications session|
|US20070106791||Dec 29, 2006||May 10, 2007||Trevor Blumenau||Content display monitor|
|US20070106792||Dec 29, 2006||May 10, 2007||Trevor Blumenau||Content display monitor|
|US20080015865 *||Jul 3, 2007||Jan 17, 2008||Leo Chiu||Behavioral adaptation engine for discerning behavioral characteristics of callers interacting with an VXML-compliant voice application|
|EP0862304A2||Feb 5, 1998||Sep 2, 1998||International Business Machines Corporation||Method for file transfer|
|EP0863678A2||Sep 15, 1997||Sep 9, 1998||AT&T Corp.||Method for automatic service provisioning for telecommunications|
|EP0998108A1||Oct 18, 1999||May 3, 2000||Lucent Technologies Inc.||Method and apparatus for giving dissatisfied call center customers special treatment|
|EP1361739A1||May 6, 2003||Nov 12, 2003||SAP Aktiengesellschaft||Method and system for speech signal processing with preceding language recognition|
|EP1377907A2||Aug 24, 2001||Jan 7, 2004||Nice Systems Ltd.||System and method for capturing browser sessions and user actions|
|EP1635534A2||Sep 16, 2001||Mar 15, 2006||Nice Systems Ltd.||Communication management system for recording at least a portion of a communication session|
|GB2331201A||Title not available|
|GB2389736A||Title not available|
|WO2001074042A2||Mar 23, 2001||Oct 4, 2001||Dragon Systems, Inc.||Lexical analysis of telephone conversations with call center agents|
|WO2002073413A2||Mar 12, 2002||Sep 19, 2002||Nice Systems Limited||System and method for capturing, analyzing and recording screen events|
|WO2003001809A1||Jun 25, 2002||Jan 3, 2003||Nice Systems Ltd.||System and method for collecting video data|
|WO2003009175A1||Jul 18, 2002||Jan 30, 2003||Nice Systems Ltd.||Method, apparatus and system for capturing and analyzing interaction based content|
|1||Abstract: Call Center Magazine, The Most Innovative Call Center Products We Saw in 1999, vol. 13, No. 2, 1 page.|
|2||Abstract: Couretas, John, Automotive News, "Car Dealer Management Software Systems are Being Re-Engineered with Web Technology to Allow Greater Communications with Customers," Published in the United States, Nov. 1999, vol. 5847, 3 pages.|
|3||Abstract: Garrison, P., Computing for Business, "An Electric Sales Call File," vol. 9, No. 4, Sep. 1984, 1 page.|
|4||Abstract: Killenbrew, Wayne et al., Telephony, "Playing by the Rules," vol. 235, No. 25, Dec. 1998, 1 page.|
|5||Abstract: Kohli, Rajiv et al., Journal of System Management, "Strategic Application of Organization Data Through Customer Relational Databases," vol. 44, No. 10, Oct. 1993, 1 page.|
|6||Abstract: Newswire, "etalk and Utopy to Provide Enhanced Quality Monitoring and Speech Analytics Solutions to Contact Centers," Apr. 2003.|
|7||Abstract: Retail Banker International, "Efficiency Ratio (ER), is Increasingly Being Looked to by Bankers, Analysts as a Yardstick of Operating Success, in Era of Permanent Downsizing and Cost Reduction," vol. 341, Published in Ireland; Jan. 1996, 2 pages.|
|8||Abstract: Sullivan, Kristina B., PC Week, Product Announcement, "Software Helps Salespeople Generate New Leads," vol. 3, No. 38, Sep. 1986, 1 page.|
|9||Abstract: Tan, Run-Hua et al., Journal of Hebei University of Technology, "Innovation Design of Product Based on TRIZ," vol. 33, No. 2, 2004.|
|10||Abstract: Testa, Bridget Mintz, Telecommunications Americas, "Call Monitoring Gets Emotional," vol. 38, No. 13, Dec. 2004, 1 page.|
|Citing Patent||Filing date||Publication date||Applicant||Title|
|US8098409 *||Feb 15, 2008||Jan 17, 2012||Paradise Resort Co., Ltd.||Image distribution system via e-mail|
|US8165874 *||Mar 6, 2009||Apr 24, 2012||International Business Machines Corporation||System, method, and program product for processing speech ratio difference data variations in a conversation between two persons|
|US8195460 *||Jun 17, 2008||Jun 5, 2012||Voicesense Ltd.||Speaker characterization through speech analysis|
|US8634542||Dec 9, 2008||Jan 21, 2014||Satmap International Holdings Limited||Separate pattern matching algorithms and computer models based on available caller data|
|US8644490||Aug 29, 2008||Feb 4, 2014||Satmap International Holdings Limited||Shadow queue for callers in a performance/pattern matching based call routing system|
|US8670548||Dec 9, 2008||Mar 11, 2014||Satmap International Holdings Limited||Jumping callers held in queue for a call center routing system|
|US8682666||May 7, 2012||Mar 25, 2014||Voicesense Ltd.||Speaker characterization through speech analysis|
|US8699694||Aug 26, 2010||Apr 15, 2014||Satmap International Holdings Limited||Precalculated caller-agent pairs for a call center routing system|
|US8712821||Dec 9, 2008||Apr 29, 2014||Satmap International Holdings Limited||Separate matching models based on type of phone associated with a caller|
|US8718271||Aug 29, 2008||May 6, 2014||Satmap International Holdings Limited||Call routing methods and systems based on multiple variable standardized scoring|
|US8724797||Aug 26, 2010||May 13, 2014||Satmap International Holdings Limited||Estimating agent performance in a call routing center system|
|US8731178||Dec 14, 2012||May 20, 2014||Satmap International Holdings Limited||Systems and methods for routing callers to an agent in a contact center|
|US8737595||Apr 1, 2013||May 27, 2014||Satmap International Holdings Limited||Systems and methods for routing callers to an agent in a contact center|
|US8750488||Aug 30, 2011||Jun 10, 2014||Satmap International Holdings Limited||Predicted call time as routing variable in a call routing center system|
|US8781100||Jun 24, 2009||Jul 15, 2014||Satmap International Holdings Limited||Probability multiplier process for call center routing|
|US8781102||Nov 5, 2013||Jul 15, 2014||Mattersight Corporation||Method and system for analyzing a communication by applying a behavioral model thereto|
|US8781106 *||Aug 29, 2008||Jul 15, 2014||Satmap International Holdings Limited||Agent satisfaction data for call routing based on pattern matching algorithm|
|US8792630||Sep 20, 2013||Jul 29, 2014||Satmap International Holdings Limited||Use of abstracted data in pattern matching system|
|US8824658||Nov 6, 2008||Sep 2, 2014||Satmap International Holdings Limited||Selective mapping of callers in a call center routing system|
|US8879715||Mar 15, 2013||Nov 4, 2014||Satmap International Holdings Limited||Call mapping systems and methods using variance algorithm (VA) and/or distribution compensation|
|US8903079||Dec 9, 2008||Dec 2, 2014||Satmap International Holdings Limited||Routing callers from a set of callers based on caller data|
|US8929537||Oct 21, 2013||Jan 6, 2015||Satmap International Holdings Limited||Call mapping systems and methods using variance algorithm (VA) and/or distribution compensation|
|US9020137||Sep 24, 2013||Apr 28, 2015||Satmap International Holdings Limited||Matching using agent/caller sensitivity to performance|
|US9025757||Mar 15, 2013||May 5, 2015||Satmap International Holdings Limited||Call mapping systems and methods using bayesian mean regression (BMR)|
|US9083801||Oct 8, 2013||Jul 14, 2015||Mattersight Corporation||Methods and system for analyzing multichannel electronic communication data|
|US9191510||Mar 14, 2013||Nov 17, 2015||Mattersight Corporation||Methods and system for analyzing multichannel electronic communication data|
|US9215323||Aug 29, 2014||Dec 15, 2015||Satmap International Holdings, Ltd.||Selective mapping of callers in a call center routing system|
|US9270826||Jul 16, 2015||Feb 23, 2016||Mattersight Corporation||System for automatically routing a communication|
|US9277055||Oct 31, 2014||Mar 1, 2016||Satmap International Holdings Limited||Call mapping systems and methods using variance algorithm (VA) and/or distribution compensation|
|US9288325||May 1, 2015||Mar 15, 2016||Satmap International Holdings Limited||Systems and methods for routing callers to an agent in a contact center|
|US9288326||May 1, 2015||Mar 15, 2016||Satmap International Holdings Limited||Systems and methods for routing a contact to an agent in a contact center|
|US9300802||Sep 30, 2015||Mar 29, 2016||Satmap International Holdings Limited||Techniques for behavioral pairing in a contact center system|
|US9357071||Jun 18, 2014||May 31, 2016||Mattersight Corporation||Method and system for analyzing a communication by applying a behavioral model thereto|
|US9407768||Jul 24, 2015||Aug 2, 2016||Mattersight Corporation||Methods and system for analyzing multichannel electronic communication data|
|US9413894||May 1, 2015||Aug 9, 2016||Afiniti International Holdings, Ltd.||Systems and methods for routing callers to an agent in a contact center|
|US9426296||May 1, 2015||Aug 23, 2016||Afiniti International Holdings, Ltd.||Systems and methods for routing callers to an agent in a contact center|
|US9462127||Sep 24, 2013||Oct 4, 2016||Afiniti International Holdings, Ltd.||Matching using agent/caller sensitivity to performance|
|US9571650||May 27, 2016||Feb 14, 2017||Mattersight Corporation||Method and system for generating a responsive communication based on behavioral assessment data|
|US9654641||Dec 2, 2015||May 16, 2017||Afiniti International Holdings, Ltd.||Systems and methods for routing callers to an agent in a contact center|
|US9667788||Jul 29, 2016||May 30, 2017||Mattersight Corporation||Responsive communication system for analyzed multichannel electronic communication|
|US9680997||May 6, 2015||Jun 13, 2017||Afiniti Europe Technologies Limited||Systems and methods for routing callers to an agent in a contact center|
|US9686411||Jun 30, 2015||Jun 20, 2017||Afiniti International Holdings, Ltd.||Call mapping systems and methods using variance algorithm (VA) and/or distribution compensation|
|US9692898||Jul 27, 2016||Jun 27, 2017||Afiniti Europe Technologies Limited||Techniques for benchmarking paring strategies in a contact center system|
|US9692899||Aug 30, 2016||Jun 27, 2017||Afiniti Europe Technologies Limited||Techniques for benchmarking pairing strategies in a contact center system|
|US9699307||Dec 18, 2015||Jul 4, 2017||Mattersight Corporation||Method and system for automatically routing a telephonic communication|
|US9699314||Jun 30, 2015||Jul 4, 2017||Afiniti International Holdings, Ltd.||Call mapping systems and methods using variance algorithm (VA) and/or distribution compensation|
|US9712676||Apr 18, 2016||Jul 18, 2017||Afiniti Europe Technologies Limited||Techniques for benchmarking pairing strategies in a contact center system|
|US9712679||Jan 28, 2008||Jul 18, 2017||Afiniti International Holdings, Ltd.||Systems and methods for routing callers to an agent in a contact center|
|US9774740||Jul 28, 2016||Sep 26, 2017||Afiniti Europe Technologies Limited||Techniques for benchmarking pairing strategies in a contact center system|
|US9781269||Dec 1, 2015||Oct 3, 2017||Afiniti Europe Technologies Limited||Techniques for hybrid behavioral pairing in a contact center system|
|US9787841||Dec 1, 2015||Oct 10, 2017||Afiniti Europe Technologies Limited||Techniques for hybrid behavioral pairing in a contact center system|
|US20080285071 *||Feb 15, 2008||Nov 20, 2008||Paradise Resort Co., Ltd.||Image distribution system via e-mail|
|US20090190740 *||Jan 28, 2008||Jul 30, 2009||Zia Chishti||Systems and Methods for Routing Callers to an Agent in a Contact Center|
|US20090190743 *||Dec 9, 2008||Jul 30, 2009||The Resource Group International Ltd||Separate matching models based on type of phone associated with a caller|
|US20090190750 *||Dec 9, 2008||Jul 30, 2009||The Resource Group International Ltd||Routing callers out of queue order for a call center routing system|
|US20090228268 *||Mar 6, 2009||Sep 10, 2009||Gakuto Kurata||System, method, and program product for processing voice data in a conversation between two persons|
|US20090233941 *||Apr 18, 2007||Sep 17, 2009||Centre National De La Recherche Scientifique-Cnrs||Co-Crystals of Calixarenes and Biologically Active Molecules|
|US20090313018 *||Jun 17, 2008||Dec 17, 2009||Yoav Degani||Speaker Characterization Through Speech Analysis|
|US20100020961 *||Nov 7, 2008||Jan 28, 2010||The Resource Group International Ltd||Routing callers to agents based on time effect data|
|US20100054452 *||Aug 29, 2008||Mar 4, 2010||Afzal Hassan||Agent satisfaction data for call routing based on pattern matching alogrithm|
|US20100111286 *||Nov 6, 2008||May 6, 2010||Zia Chishti||Selective mapping of callers in a call center routing system|
|US20100142698 *||Dec 9, 2008||Jun 10, 2010||The Resource Group International Ltd||Separate pattern matching algorithms and computer models based on available caller data|
|US20150279077 *||Jan 22, 2015||Oct 1, 2015||Christopher Deane Shaw||Methods for spontaneously generating behavior in two and three-dimensional images and mechanical robots, and of linking this behavior to that of human users|
|US20160373579 *||Sep 2, 2016||Dec 22, 2016||Ingenio, Llc||Systems and methods to determine quality of services provided over real-time communication connections|
|US20170155768 *||Feb 13, 2017||Jun 1, 2017||Mattersight Corporation||Method and system for analyzing caller interaction event data|
|U.S. Classification||379/88.16, 379/265.02|
|International Classification||H04M11/00, H04M3/00|
|Cooperative Classification||H04M3/5183, H04M2201/40, G10L15/1822, G10L15/26, H04M3/5175, H04M3/42221|
|European Classification||H04M3/42L, G10L15/18U, H04M3/51S, G10L15/26A|
|Sep 23, 2005||AS||Assignment|
Owner name: ELOYALTY CORPORATION, ILLINOIS
Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNORS:CONWAY, KELLY;CAPERS, KEENE HEDGES;DANSON, CHRISTOPHER;AND OTHERS;REEL/FRAME:016840/0418;SIGNING DATES FROM 20050802 TO 20050810
Owner name: ELOYALTY CORPORATION, ILLINOIS
Free format text: ASSIGNMENT OF ASSIGNORS INTEREST;ASSIGNORS:CONWAY, KELLY;CAPERS, KEENE HEDGES;DANSON, CHRISTOPHER;AND OTHERS;SIGNING DATES FROM 20050802 TO 20050810;REEL/FRAME:016840/0418
|Jun 2, 2011||AS||Assignment|
Owner name: MATTERSIGHT CORPORATION, ILLINOIS
Free format text: CHANGE OF NAME;ASSIGNOR:ELOYALTY CORPORATION;REEL/FRAME:026381/0985
Effective date: 20110531
|Feb 2, 2015||FPAY||Fee payment|
Year of fee payment: 4
|Aug 10, 2016||AS||Assignment|
Owner name: HERCULES CAPITAL, INC., CALIFORNIA
Free format text: INTELLECTUAL PROPERTY SECURITY AGREEMENT;ASSIGNOR:MATTERSIGHT CORPORATION;REEL/FRAME:039646/0013
Effective date: 20160801
|Jul 14, 2017||AS||Assignment|
Owner name: THE PRIVATEBANK AND TRUST COMPANY, ILLINOIS
Free format text: SECURITY INTEREST;ASSIGNOR:MATTERSIGHT CORPORATION;REEL/FRAME:043200/0001
Effective date: 20170629
|Jul 17, 2017||AS||Assignment|
Owner name: MATTERSIGHT CORPORATION, ILLINOIS
Free format text: RELEASE BY SECURED PARTY;ASSIGNOR:HERCULES CAPITAL, INC.;REEL/FRAME:043215/0973
Effective date: 20170629